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DSAA Topics

DSAA encourages submissions on original and significant theoretical research achievements and best practices of data-driven advanced analytics, computing, discovery, machine learning, management, optimization, statistics, and their applications. Typical topics include but are not limited to:

Data science foundations

  • Data characteristics and complexities
  • Interactions, couplings, relations, and heterogeneities
  • Factors, structures, relations and distributions
  • Mathematical, probabilistic, and statistical theories and models
  • Learning theories, models, and systems
  • Information theories for analytics and learning
  • Deep analytics and deep learning
  • Cognitve, neural and human learning methods
  • Intent and insight learning
  • Inference, regularization and optimization

Analytics, learning, and optimization

  • Heterogeneous and mixed analytics
  • Multi-domain/media/modal/source/view/task learning
  • NLP, text and document analysis
  • Temporal, sequential and geo-spatial analysis
  • Graph, tree, group and community analysis
  • Web, online and network analysis
  • Adaptive, continual, online, stream and real-time analytics
  • Distributed, parallel and high-performing analytics
  • Large-scale and scalable analytics
  • Descriptive, predictive and prescriptive analytics

Infrastructure, management, and processing

  • Data pre-processing, sampling and augmentation
  • Feature engineering and transformation
  • High-performance, parallel and distributed computing
  • Analytical system architectures and infrastructure
  • Heterogeneous data/information integration, matching and sharing
  • Crowdsourcing, cloud and edge computing
  • Post-processing and post-mining
  • Human-learning interaction and interfaces
  • Web, social web and distributed search
  • Indexing and query processing
  • Information and knowledge retrieval
  • Personalized search and recommendation

Evaluation, applications, and tools

  • Complexity, efficiency, effectiveness, and scalability
  • Quality, fairness, bias, and evaluation
  • Social and economic impact and actionability
  • Presentation and visualization
  • Analytical and visualization languages and toolkit
  • Business and government analytics
  • Online, mobile, IoT, social, living analysis
  • Domain-specific applications
  • Anomaly, fraud, exception, change, event and crisis
  • Ethics, integrity and regulation
  • Security, trust, diversity, and risk
  • Privacy-preserving analytics
  • Reproducibility, explanation and interpretability
Email: contacts@dsaa.co